In this paper, a GPU-based implementation of Differential Evolution (DE) and Particle Swarm Optimization (PSO) in CUDA is used to automatically tune the parameters of PSO. The parameters were tuned over a set of 8 problems and then tested over 20 problems to assess the generalization ability of the tuners. We compare the results obtained using such parameters with the 'standard' ones proposed in the literature and the ones obtained by state-of-the-art tuning methods (irace). The results are comparable to the ones suggested for the standard version of PSO (SPSO), and the ones obtained by irace, while the GPU implementation makes tuning time acceptable. To the best of our knowledge, this is the first time that a general purpose library of GPU...
In this paper, a model for Graphics Processing Unit (GPU) implementation of Particle Swarm Optimizat...
International audienceModern GPUs enable widely affordable personal computers to carry out massively...
Evolutionary Computation techniques and other metaheuristics have been increasingly used in the last...
In this paper we compare GPU-based implementations of three metaheuristics: Particle Swarm Optimizat...
Particle swarm optimization (PSO), like other population-based meta-heuristics, is intrinsically par...
A novel particle swarm optimization with triggered mutation (PSO-TM) is presented in this paper for ...
Particle swarm optimization (PSO), like other population-based meta-heuristics, is intrinsically par...
The performance of an evolutionary algorithm strongly depends on the choice of the parameters which ...
A novel particle swarm optimization with triggered mutation (PSO-TM) is presented in this paper for ...
Graphic processing units (GPUs) emerged recently as an exciting new hardware environment for a truly...
Particle Swarm Optimization is robust and effective method to solve optimization problems. Particle ...
This thesis deals with a population based stochastic optimization technique PSO (Particle Swarm Opti...
This paper describes our latest implementation of Particle Swarm Optimization (PSO) with simple ring...
This work deals with the PSO technique (Particle Swarm Optimization), which is capable to solve comp...
Population based metaheuristic can benefit from explicit parallelization in order to address complex...
In this paper, a model for Graphics Processing Unit (GPU) implementation of Particle Swarm Optimizat...
International audienceModern GPUs enable widely affordable personal computers to carry out massively...
Evolutionary Computation techniques and other metaheuristics have been increasingly used in the last...
In this paper we compare GPU-based implementations of three metaheuristics: Particle Swarm Optimizat...
Particle swarm optimization (PSO), like other population-based meta-heuristics, is intrinsically par...
A novel particle swarm optimization with triggered mutation (PSO-TM) is presented in this paper for ...
Particle swarm optimization (PSO), like other population-based meta-heuristics, is intrinsically par...
The performance of an evolutionary algorithm strongly depends on the choice of the parameters which ...
A novel particle swarm optimization with triggered mutation (PSO-TM) is presented in this paper for ...
Graphic processing units (GPUs) emerged recently as an exciting new hardware environment for a truly...
Particle Swarm Optimization is robust and effective method to solve optimization problems. Particle ...
This thesis deals with a population based stochastic optimization technique PSO (Particle Swarm Opti...
This paper describes our latest implementation of Particle Swarm Optimization (PSO) with simple ring...
This work deals with the PSO technique (Particle Swarm Optimization), which is capable to solve comp...
Population based metaheuristic can benefit from explicit parallelization in order to address complex...
In this paper, a model for Graphics Processing Unit (GPU) implementation of Particle Swarm Optimizat...
International audienceModern GPUs enable widely affordable personal computers to carry out massively...
Evolutionary Computation techniques and other metaheuristics have been increasingly used in the last...